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All qualifications and part qualifications registered on the National Qualifications Framework are public property. Thus the only payment that can be made for them is for service and reproduction. It is illegal to sell this material for profit. If the material is reproduced or quoted, the South African Qualifications Authority (SAQA) should be acknowledged as the source. |
| SOUTH AFRICAN QUALIFICATIONS AUTHORITY |
| REGISTERED QUALIFICATION: |
| Master of Science in Machine Learning Engineering |
| SAQA QUAL ID | QUALIFICATION TITLE | |||
| 122208 | Master of Science in Machine Learning Engineering | |||
| ORIGINATOR | ||||
| University of Johannesburg | ||||
| PRIMARY OR DELEGATED QUALITY ASSURANCE FUNCTIONARY | NQF SUB-FRAMEWORK | |||
| CHE - Council on Higher Education | HEQSF - Higher Education Qualifications Sub-framework | |||
| QUALIFICATION TYPE | FIELD | SUBFIELD | ||
| Master's Degree | Field 10 - Physical, Mathematical, Computer and Life Sciences | Information Technology and Computer Sciences | ||
| ABET BAND | MINIMUM CREDITS | PRE-2009 NQF LEVEL | NQF LEVEL | QUAL CLASS |
| Undefined | 180 | Not Applicable | NQF Level 09 | Regular-Provider-ELOAC |
| REGISTRATION STATUS | SAQA DECISION NUMBER | REGISTRATION START DATE | REGISTRATION END DATE | |
| Registered | EXCO 0922/24 | 2024-03-07 | 2027-03-07 | |
| LAST DATE FOR ENROLMENT | LAST DATE FOR ACHIEVEMENT | |||
| 2028-03-07 | 2031-03-07 | |||
| In all of the tables in this document, both the pre-2009 NQF Level and the NQF Level is shown. In the text (purpose statements, qualification rules, etc), any references to NQF Levels are to the pre-2009 levels unless specifically stated otherwise. |
This qualification does not replace any other qualification and is not replaced by any other qualification. |
| PURPOSE AND RATIONALE OF THE QUALIFICATION |
| Purpose:
The purpose of the Master of Science in Machine Learning Engineering qualification is to develop postgraduate learners with high-level research abilities, and a good knowledge base in the field of Machine Learning Engineering. Qualifying learners are prepared for work in the field of Machine Learning Engineering as well as (depending on additional skills) Data Science and Data Engineering. In this manner, the qualification will further skills development in a specialist area, serve to assist industry professionals in upskilling and diminish the skills shortage within the industry. It will also seek to improve the self-learning capabilities of each learner to promote lifelong learning and an aptitude for developing other learners in similar fields. Upon completion of this qualification, qualifying learners will be able to: Rationale: The world is inundated with data, constantly moving, and renewing itself. Such vast amounts of data are of no use if there are no people able to collect, collate, analyse, and apply it to the benefit of society. This is where a qualification in Machine Learning Engineering becomes a fundamental stepping stone to address South Africa's growing need for scientists and engineers capable of utilising data to its full. To obtain insight from data in various forms with various outcomes, both structured and unstructured, various scientific components need to be collated and structured within an often-existing technological framework. As such, it is not only necessary to design the relevant machine learning models but also to ensure that the pipelines and structures are in place to bring such a model into production. Only in this manner can the true benefit of data science and machine learning be realised. Machine Learning Engineering is a multi-disciplinary field, involving a wide range of disciplines, from applied mathematics to statistics and machine learning to software engineering, which places it within the realm of the University's vision for driving the 4IR. Advances in computer technology and processing speed, the relatively low cost of storing data, and the massive availability of data from the Internet and other sources have provided the ideal platforms for taking data and making meaning from it for the benefit of society. The field of Machine Learning Engineering by its very nature requires highly skilled individuals. The level of scientific expertise along with the practical experience of engaging with the technicalities of application, require such individuals to straddle both academia and industry. As such, effective research entities are often ideal to host qualifications in such a field, given their collaborative mindset with regard to research endeavours, and engagement with industry. The latter provides the opportunity to source projects from industry, which often leads to highly impactful and practical research. Furthermore, given the high-level, unique, and diverse skills needed by Machine Learning Engineers, the demand for such individuals has grown exponentially, far outstripping the current supply. Globally and locally, the education system must be empowered to design relevant qualifications often context-specific, given the nature of the requirements within a certain company to stay abreast of this demand. The industry does not have the capacity or necessary skill at times to conduct the required training without the support of formal higher education institutions. As such, the only way the next generation of Machine Learning Engineers, Data Scientists and Data Engineers can be taught is through an appropriate and effective postgraduate academic qualification, designed to consider the need for part-time, distance study. The development of this qualification in particular would further allow for the development of cutting-edge research in Machine Learning Engineering, Data Science and Data Engineering. This qualification would be part of developing the next generation of scientists or engineers capable of converting data intelligence into business value for any industry. Qualifying learners will have the ability to tackle problems across social, economic, and technical fields, allowing them to apply a cross-disciplinary and complex lens to the multi-layered challenges of the 21st century. The impact of qualified professionals in this area will be immeasurable. This will be a flagship qualification, leading the way into a data-driven society where individuals with relevant skills are of key importance. There is much demand in the industry such as, in finance, telecommunications, agriculture, health etc. as well as for the upskilling of staff around Machine Learning Engineering, Data Science and Data Engineering. Given the wide scope of the field, being a Machine Learning Engineer covers a range of professions including, but not limited to, engineers, computer scientists, applied mathematicians, physicists, and machine learners. The qualification is aimed at learners with a Bachelors Honours Degree or any related qualification at NQF Level 8 with mathematical background, and in particular: The Research Group, Data Across Disciplines, which is driving this qualification is comprised of a group of individuals who are all experts in appropriate fields. They are active in research, teaching, and postgraduate supervision, and have links with international and local collaborators in academia and industry. These partnerships will provide the prospects for the sustainability of the proposed qualification. Furthermore, the qualification has been structured in a way which will allow it to speak to and support future qualifications in Data Science and Data Engineering for instance, and allows articulation between a variety of Honours and a Master's qualifications in Science, the Academy of Computer Science, and the School of Electrical Engineering at the very least. |
| LEARNING ASSUMED TO BE IN PLACE AND RECOGNITION OF PRIOR LEARNING |
| Recognition of Prior Learning (RPL):
The institution has an approved Recognition of Prior Learning (RPL) policy applicable to equivalent qualifications for admission into the qualification. RPL will be applied to accommodate applicants who qualify. RPL thus provides alternative access and admission to qualifications, as well as advancement within qualifications. RPL for access: RPL for exemption of modules: RPL for credit: Entry Requirements: The minimum entry requirement for this qualification is: Or Or Or |
| RECOGNISE PREVIOUS LEARNING? |
| Y |
| QUALIFICATION RULES |
| This qualification consists of the following compulsory and elective modules at NQF Level 9 totalling 165 Credits.
Compulsory Modules, Level 9, 150 Credits: Elective Modules, Level 9, 15 Credits: (Choose one of the following modules): |
| EXIT LEVEL OUTCOMES |
| 1. Identify and accurately analyse problems within the Machine Learning Engineering framework and environment by researching problems creatively and innovatively.
2. Organise and manage activities responsibly, effectively, and ethically accept and take responsibility within competence, and exercise judgement based on knowledge and expertise, pertaining to the field of research. 3. Plan and conduct applicable levels of investigation, research and or experiments by applying appropriate theories, methodologies, and interpretation. 4. Communicate effectively, both orally and in writing, with specific research audiences and the community at large, using appropriate methodologies and interpretation. 5. Demonstrate applicable cultural, and aesthetic sensitivity across a range of social and environmental contexts in executing Machine Learning Engineering research or development activities. 6. Demonstrate an appropriate understanding of the relevant topics which provide the knowledge base of an expert Machine Learning Engineer. Associated Assessment Criteria Associated Assessment Criteria for Exit Level Outcome 1: Associated Assessment Criteria for Exit Level Outcome 2: Associated Assessment Criteria for Exit Level Outcome3: Associated Assessment Criteria for Exit Level Outcome 4: Associated Assessment Criteria for Exit Level Outcome 5: Associated Assessment Criteria for Exit Level Outcome 6: |
| ASSOCIATED ASSESSMENT CRITERIA |
| Associated Assessment Criteria for Exit Level Outcome 1:
Associated Assessment Criteria for Exit Level Outcome 2: Associated Assessment Criteria for Exit Level Outcome3: Associated Assessment Criteria for Exit Level Outcome 4: Associated Assessment Criteria for Exit Level Outcome 5: Associated Assessment Criteria for Exit Level Outcome 6: |
| INTERNATIONAL COMPARABILITY |
| Country: United States of America (USA)
Institution: Drexel University (DU) Qualification title: Master of Science in Machine Learning Engineering Duration eighteen months (18). Purpose/rationale A master's in machine learning engineering provides knowledge in three important pillars; Fundamentals: Become an expert in the underpinnings of modern machine learning while drawing from an understanding of fundamental principles from various disciplines. Implementation: Integrate industry-leading software tools to rapidly prototype machine learning systems. Gain exposure to novel computing architectures of machine learning for implementation of new and advanced outcomes. Entry requirements Qualification structure Modules Qualification progression A machine learning engineering qualification will prepare you for a career path that could include continuing your education with a Doctor of Philosophy (PhD) qualification or pursuing advanced technical positions. Similarities Difference Country: United Kingdom Institution: University College London (UCL) Qualification title: Master of Science in Machine Learning Duration: One year Credits:180 Purpose/rationale The qualification provides a sound basis for those embarking on a career in research or development or taking up positions within industries where machine learning is currently applied or will be applied in the future, such as finance, banking and insurance, retail and web-commerce, pharmaceuticals, computer security and web search. Entry requirements Or Architecture degree, taken over a total duration of 5 years, with Second Class Division 1 or 70%, for South African learners. Qualification Structure Modules Compulsory modules Optional modules Similarities |
| ARTICULATION OPTIONS |
| Horizontal Articulation:
Vertical Articulation: Diagonal Articulation: Diagonal articulation options are not available. |
| MODERATION OPTIONS |
| N/A |
| NOTES |
| N/A |
| LEARNING PROGRAMMES RECORDED AGAINST THIS QUALIFICATION: |
| NONE |
| PROVIDERS CURRENTLY ACCREDITED TO OFFER THIS QUALIFICATION: |
| This information shows the current accreditations (i.e. those not past their accreditation end dates), and is the most complete record available to SAQA as of today. Some Primary or Delegated Quality Assurance Functionaries have a lag in their recording systems for provider accreditation, in turn leading to a lag in notifying SAQA of all the providers that they have accredited to offer qualifications and unit standards, as well as any extensions to accreditation end dates. The relevant Primary or Delegated Quality Assurance Functionary should be notified if a record appears to be missing from here. |
| 1. | University of Johannesburg |
| All qualifications and part qualifications registered on the National Qualifications Framework are public property. Thus the only payment that can be made for them is for service and reproduction. It is illegal to sell this material for profit. If the material is reproduced or quoted, the South African Qualifications Authority (SAQA) should be acknowledged as the source. |